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Reducing process delays for real-time earthquake parameter estimation - An application of KD tree to large databases for Earthquake Early Warning

机译:减少实时地震参数估计的过程延迟-KD树在大型地震预警数据库中的应用

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摘要

Earthquake parameter estimations using nearest neighbor searching among a large database of observations can lead to reliable prediction results. However, in the real-time application of Earthquake Early Warning (EEW) systems, the accurate prediction using a large database is penalized by a significant delay in the processing time. We propose to use a multidimensional binary search tree (KD tree) data structure to organize large seismic databases to reduce the processing time in nearest neighbor search for predictions. We evaluated the performance of KD tree on the Gutenberg Algorithm, a database-searching algorithm for EEW. We constructed an offline test to predict peak ground motions using a database with feature sets of waveform filter-bank characteristics, and compare the results with the observed seismic parameters. We concluded that large database provides more accurate predictions of the ground motion information, such as peak ground acceleration, velocity, and displacement (PGA, PGV, PGD), than source parameters, such as hypocenter distance. Application of the KD tree search to organize the database reduced the average searching process by 85% time cost of the exhaustive method, allowing the method to be feasible for real-time implementation. The algorithm is straightforward and the results will reduce the overall time of warning delivery for EEW.
机译:在大型观测数据库中使用最近邻搜索进行地震参数估计可以得出可靠的预测结果。但是,在地震预警(EEW)系统的实时应用中,使用大型数据库进行的准确预测会因处理时间的显着延迟而受到不利影响。我们建议使用多维二进制搜索树(KD树)数据结构来组织大型地震数据库,以减少最近邻搜索中的预测处理时间。我们用古腾堡算法(一种用于EEW的数据库搜索算法)评估了KD树的性能。我们构建了一个离线测试,以使用具有波形滤波器组特征集的数据库来预测峰值地面运动,并将结果与​​观察到的地震参数进行比较。我们得出的结论是,大型数据库比诸如震源距离之类的源参数能更准确地预测地面运动信息,例如峰值地面加速度,速度和位移(PGA,PGV,PGD)。 KD树搜索组织数据库的应用使穷举方法的平均搜索过程减少了85%的时间成本,从而使该方法对于实时实施是可行的。该算法非常简单,其结果将减少EEW发出警报的总时间。

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  • 来源
    《Computers & geosciences》 |2018年第5期|22-29|共8页
  • 作者单位

    CALTECH, Dept Civil & Mech Engn, 1200 E Calif Blvd, Pasadena, CA 91106 USA;

    CALTECH, Div Geol & Planetary Sci, Pasadena, CA 91125 USA;

    CALTECH, Dept Civil & Mech Engn, 1200 E Calif Blvd, Pasadena, CA 91106 USA;

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